当前位置: X-MOL 学术Annu. Rev. Anim. Biosci. › 论文详情
Our official English website, www.x-mol.net, welcomes your feedback! (Note: you will need to create a separate account there.)
Use of Mechanistic Nutrition Models to Identify Sustainable Food Animal Production.
Annual Review of Animal Biosciences ( IF 8.7 ) Pub Date : 2020-02-18 , DOI: 10.1146/annurev-animal-021419-083913
Mark D Hanigan 1 , Veridiana L Daley 1, 2
Affiliation  

To feed people in the coming decades, an increase in sustainable animal food production is required. The efficiency of the global food production system is dependent on the knowledge and improvement of its submodels, such as food animal production. Scientists use statistical models to interpret their data, but models are also used to understand systems and to integrate their components. However, empirical models cannot explain systems. Mechanistic models yield insight into the mechanism and provide guidance regarding the exploration of the system. This review offers an overview of models, from simple empirical to more mechanistic models. We demonstrate their applications to amino acid transport, mass balance, whole-tissue metabolism, digestion and absorption, growth curves, lactation, and nutrient excretion. These mechanistic models need to be integrated into a full model using big data from sensors, which represents a new challenge. Soon, training in quantitative and computer science skills will be required to develop, test, and maintain advanced food system models.

中文翻译:


使用机械营养模型确定可持续的食用动物生产。

为了在未来几十年内养活人们,需要增加可持续的动物粮生产。全球粮食生产系统的效率取决于其子模型(例如食用动物生产)的知识和改进。科学家使用统计模型来解释其数据,但模型也用于理解系统和集成其组件。但是,经验模型无法解释系统。力学模型可深入了解该机理,并提供有关系统探索的指导。本文对模型进行了概述,从简单的经验模型到更多的机械模型。我们证明了它们在氨基酸转运,质量平衡,全组织代谢,消化吸收,生长曲线,泌乳和营养排泄方面的应用。这些机械模型需要使用来自传感器的大数据集成到完整模型中,这是一个新的挑战。不久,将需要进行定量和计算机科学技能的培训,以开发,测试和维护先进的食品系统模型。

更新日期:2020-02-18
down
wechat
bug